Computational phenotyping of obstructive airway diseases and allergy

dc.contributor.authorLisik, Daniil
dc.date.accessioned2025-05-13T08:16:15Z
dc.date.available2025-05-13T08:16:15Z
dc.date.issued2025-05-13
dc.description.abstractAllergy and obstructive airway diseases, e.g., asthma, are common and may inflict substantial hardship. They are also interlinked and heterogeneous in their clinical presentations (phenotypes). Artificial intelligence (AI) is useful for phenotyping, by facilitating pattern discovery in complex data. The aim of this thesis was, using AI, to further our understanding of phenotypes of obstructive airway diseases (focusing on asthma), symptoms thereof, and allergies. In addition, potential risk factors and outcomes were evaluated to provide further clinical utility. Paper I was a systematic review on AI-derived longitudinal phenotypes (trajectories) of asthma and allergy in children. A total of 71 studies were identified with differing methodologies and populations. However, overall, few trajectories were consistently identified. The methodological approaches were generally flawed, with insufficient reporting. Further, most studies used binary measures of disease, without inclusion of assessment of severity or other disease characteristics, which may have underestimated the variety of identified phenotypes. Meta-analyses were limited by heterogeneity, but confirmed the association with actionable risk factors, e.g., prenatal/childhood smoking exposure. Paper II was a trajectory analysis on phenotypes of asthma, allergic rhinitis, and eczema in a population-based cohort of children. The input data consisted of parental report of disease and register data on dispensed medication. Nine trajectories were identified, differing in disease and medication patterns, even between trajectories that appeared similar from a binary disease/no disease perspective. These findings illustrate how richer data enable identification of more informative phenotypes. Paper III was a cluster analysis of late-onset asthma phenotypes, utilizing interview/clinical data from representative adult samples. Clustering was done separately on those with asthma debuting at ≥12 years, ≥20 years, and ≥40 years. The identified sets of clusters were similar across onset age groups, but varied substantially among each other in symptoms, lung function, asthma control, and comorbidities. Importantly, they appeared relatively easy to distinguish in the clinical setting. Paper IV was a cluster analysis based on self-reported respiratory symptoms, utilizing data from population-based adult cohorts. Five clusters were identified, ranging widely in symptom locality (e.g., lower respiratory symptoms), type, and frequency/persistence. Further, it was found that all clusters, except the allergic nasal symptoms cluster, even the low-symptomatic cluster, were associated with increased (cause-specific) mortality. As the clusters only partially overlapped with diagnosed respiratory disease, our findings underscore the clinical relevance of respiratory symptoms in their own right. In conclusion, the present work demonstrates that AI, particularly on multimodal data, can guide us towards a more comprehensive subtyping of obstructive respiratory disease and allergy, ultimately paving way for personalized management and preventive measures.sv
dc.gup.defencedate2025-06-04
dc.gup.defenceplaceOnsdagen den 4 juni 2025, kl. 9.00, sal Europa, Konferenscenter Wallenberg, Medicinaregatan 20A, Göteborgsv
dc.gup.departmentInst of Medicine. Department of Internal Medicine and Clinical Nutritionsv
dc.gup.dissdb-fakultetSA
dc.gup.originUniversity of Gothenburg. Sahlgrenska Academysv
dc.identifier.isbn978-91-8115-220-3 (TRYCK)
dc.identifier.isbn978-91-8115-221-0 (PDF)
dc.identifier.urihttps://hdl.handle.net/2077/85337
dc.language.isoengsv
dc.relation.haspartLisik D, Milani GP, Salisu M, Özuygur Ermis SS, Goksör E, Basna R, Wennergren G, Kankaanranta H, Nwaru BI. Machine learning-derived phenotypic trajectories of asthma and allergy in children and adolescents: protocol for a systematic review. BMJ Open. 2024 Aug 30;14(8):e080263. http://doi.org/10.1136/bmjopen-2023-080263sv
dc.relation.haspartLisik D, Wennergren G, Kankaanranta H, Basna R, Shah SA, Alm B, Celind FS, Goksör E, Nwaru BI. Asthma and allergy trajectories in children based on combined parental report and register data. Pediatr Allergy Immunol. 2024 Oct;35(10):e14254. http://doi.org/10.1111/pai.14254sv
dc.relation.haspartLisik D, Backman H, Basna R, Hedman L, Bashir MBA, Ercan S, Abohalaka R, Ermis SSÖ, Ekerljung L, Stridsman C, Winsa-Lindmark S, Mincheva R, Pullerits T, Lötvall J, Lindberg A, Rådinger M, Rönmark E, Kankaanranta H, Nwaru BI. Late-onset asthma phenotypes by age of onset: a deep cluster analysis in Swedish population-based cohorts. ERJ Open Research (under review)sv
dc.relation.haspartLisik D, Backman H, Kankaanranta H, Basna R, Hedman L, Ekerljung L, Nyberg F, Lindberg A, Wennergren G, Rönmark E, Nwaru B, Vanfleteren L. All-cause and cause-specific mortality in respiratory symptom clusters: a population-based multicohort study. Respir Res. 2025 Apr 16;26(1):150. http://doi.org/10.1186/s12931-025-03224-7sv
dc.subjectallergic rhinitissv
dc.subjectallergysv
dc.subjectartificial intelligencesv
dc.subjectasthmasv
dc.subjectatopic dermatitissv
dc.subjectcluster analysissv
dc.subjecteczemasv
dc.subjectepidemiologysv
dc.subjectmachine learningsv
dc.subjectmeta-analysissv
dc.subjectmortality analysissv
dc.subjectphenotypessv
dc.subjectphenotypingsv
dc.subjectrespiratory symptomssv
dc.subjectrisk factorssv
dc.subjectsystematic reviewsv
dc.subjecttrajectoriessv
dc.subjecttrajectory analysissv
dc.subjectwheezingsv
dc.titleComputational phenotyping of obstructive airway diseases and allergysv
dc.typetexteng
dc.type.degreeDoctor of Philosophy (Medicine)sv
dc.type.svepDoctoral thesiseng

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